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1
UNIVERSITY OF MISKOLC
FACULTY OF ECONOMIC SCIENCES
INSTITUTE OF WORLD AND REGIONAL ECONOMICS
ÁGNES HEGYI-KÉRI
THESIS STATEMENTS OF THE DISSERTATION
THE EFFECTS OF DEINDUSTRIALIZATION ON THE LABOUR
MARKET
IN THE REGIONS OF THE VISEGRÁD COUNTRIES AND THROUGH THE
EXAMPLE OF MISKOLC
BETWEEN 1999-2012
Name of Doctoral School: „Enterprise Theory and Practice” Doctoral
School
Head of the Doctoral School: Prof. Dr. Károly Balaton
Professor
Academic supervisor: Dr. Dániel Kuttor
Associate Professor
Miskolc
2015
2
Contents
1. Reasons for topic selection, basic research problems 4
2. Goals and methods 5
3. Evoluation of the concept of deindustrialization 8
4. Theoretical overview of deindustrialization 9
5. New findings and novel statements of the research 12
5.1. Analysing deindustrialization in the Visegrád Countries 12
5.2. Measuring labour market depression and migration effect arising from deindustrialization in
Miskolc 19
6. Practical results of the research 30
7. Future plans for analysis 30
8. Author’s dissertation related publications 31
9. References 34
3
My acknowledgement for their support in this thesis goes to: Dr. Tóthné Prof. dr. Szita Klára,
Dr. Kuttor Dániel, associate professor, my supervisor, Dr. Dabasi Halász Zsuzsanna, associate
professor, my mentor, my family and my mother.
„This research was realized in the frames of TÁMOP 4.2.4. A/2-11-1-2012-0001 „National
Excellence Program – Elaborating and operating an inland student and researcher personal
support system” The project was subsidized by the European Union and co-financed by the
European Social Fund.”
4
1. Reasons for topic selection, basic research problems
The Visegrad Countries, including Hungary, became part of an economic experiment
when in a unique way they switched from planned economy to market economy. Obviously
this transition induced severe changes in the society and economy. Although the problems
arising form this transition appeared on all levels of national economy, the economy had to
face the most urgent and profound need for transformation. The changes in the economy had
an indirect effect on the economy as a whole, and continue to influence the economic and
social development of certain regions and territories. Despite the similarities, the industrial
transition has a different impact on each geographic unit. I believe that several of the severe
economic and social problems present in Miskolc and the North Hungarian regions are the
same as the processes observed in other regions of the Visegrad Countries, on a regional level
we can observe different categories.
My basic research questions in my work are the following: Are there any
similarities between the deindustrialization process in North Hungary and those in other
Visegrád countries? I also seek the answer to what social, physical and labour market
consequences did the receding industry have on my home town, Miskolc; furthermore, I
intend to find out how and to what extent do these influence the age and quantitative
ratio of the population. Due to the derived nature of the labour market, its processes mimic the transformation
of the industry, thus deindustrialization, too. The trends in employment numbers are crucial
factors for the economic growth and social prosperity. There are numerous indicators to
describe deindustrialization, including the number of enterprises, industrial contribution to
GDP, etc. In this paper my goal is to analyse deindustrialization from the aspect of the labour
market. In my work I synthesize the experiences of the developed countries regarding
deindustrialization. Accepting the definition found in literature I quantify deindustrialization
with the lapse in the number of people employed in the economy and the decrease in the ratio
of the industrially employed labour force. As I define the deindustrialization processes I put
the regional and local levels into the focus of my research, also looking into it on a regional
and nationwide level. I also examine the effects of the decrease in employment on a regional
and local level, thus enhancing the deeper understanding on the topic and helping to find both
unique and common directions for development. In case of Miskolc I draw attention to the
necessity of revitalizing urban brownfields, which is the main cause of migration from the
city.
To answer my basic research problem I formulate several questions which establish my
hypothesis. The current researches in the Institute of World and Regional Economics on the
Department of Labour and Socioeconomics drew my attention to the importance of
researching what effects deindustrialization has on socioeconomy and the labour market. On a
regional level I chose the time interval between 1999 and 2012 to answer my research
questions. Regarding this period there is a standardized database for all four Visegrád
Countries. The period has a 13-year scope which allows for well-grounded conclusions and
statements. In the years following the regime change the suppression of industry took place in
the Visegrád Contries. The period between 1999 and 2012 provides new information to define
the different types of deindustrialization and to observe the labour market changes brought
forth by deindustrialization. Since 1999 the regional processes were heavily influenced by the
preparations to join the European Union. The unified employment database formed after 1999
provides an excellent opportunity to study and define the different types of deindustrialization
and to come to the right conclusions. Aside from the labour market relevance of the
brownfields arising in the wake of deindustrialization, I also consider the options for
revitalization. I study the deindustrialization processes in Miskolc, which clarifies what
5
connection there is between the deterioration of the man-made surroundings and the
individuals' attitude towards the social order in that area. Accepting this hypothesis I can
concentrate on how the brownfields created by deindustrialization influence the workers'
attitude towards the labour market, the roles of the labour market in reallocation and the
migration of the younger generations.
2. Goals and methods To answer my basic research problem I form several questions and I base my hypotheses on
them:
How can the different economic schools explain the process, causes and consequences of receding industry?
Is deindustrialization present in the Visegrád Countries between 1999 and 2012? Which types can be identified?
Does the process of deindustrialization have any effect on the spatial patterns of the country? Is there a connection between the concentration and specialization of
deindustrialization in the Visegrád Countries?
Do the brownfields arising in the wake of deindustrialization have labour market relevance? What kinds of labour market problems can be identified?
What kinds of attitudes and mentalities can be defined in the labour market defined by deindustrialization? What attitudes do the young labourers have in the labour market of
Miskolc?
The following figure displays the train of thought and the formation of hypotheses in this
dissertation.
Figure 1: Logical structure of the research Source: own compilation
Relying on the levels of analysis provided by Williamson (2000) I aim to study resource
reallocation, which indicate the relationship between structure change and regional processes.
In answering my research question I strive to form such categories which allow for me to
Regional processes
Structural transition
Negative deindustrialization on
a local level
Forming regional work
categories
Regional analysis of
deindustrialization
Conceptual and theoretical
analysis of deindustrialization
Second generation
migration effect
Lack of physical revitalization
Lagging social revitalization
Labour market depression
H1
H5 H6
H3
H2
H4
6
study the pattern of deindustrialization, unveil the similarities, understand the regional
deindustrialization process and categorize the regions. This facilitates the in depth analysis of
similarities and differences in the regions of the Visegrád Countries. Relying on the work of
Rowthorn - Wells (1987) I define the negative, positive and external deindustrialization
processes on a regional level. I examine the changes that took place in the deindustrialization
types, and investigate what kind of specialization; concentration and structural changes took
place in the areas with positive or external deindustrialization. I also strive to understand what
common characteristics they have. Based on the work of Rowthorn - Wells (1987) I study not
only the amplitude of structural change, but also the connection between the primary sector,
the changes in the number of people employed in the industry and the different types of
deindustrialization. In conclusion, I set my goals to study the following hypotheses.
Hypothesis 1
In the Visegrád Countries the deindustrialization process is present on a regional level
between 1999 and 2012, and several types can be observed.
Hypothesis 2
The structural changes, the primary sector's employment potential, the changes of the
industrial structure and its lag all have a great influence on the deindustrialization
process.
Hypothesis 3
The industrial concentration and specialization are connected to the different types of
deindustrialization in the Visegrád Countries.
In the second chapter I study the endogenous factors in two negative deindustrialization
areas. In my own classification the regions of North Hungary and South Dunántúl belong to
the negative deindustrialization areas. I find it important to research the connection between
employment in the industry and the inner factors of deindustrialization in those negative
deindustrialization areas defined by local processes. Based on these I formulate the following
hypothesis.
Hypothesis 4
There is a spatial correlation between the presence of brownfields and the weakening
labour market.
During literature analysis my attention is drawn to the local migration, labour market
depression and second generation migration push due to the migration characteristic to
regions with negative deindustrialization and age group analysis of employment.
Additionally, I strive to find their correlation to brownfields and the lack of revitalization. I
analyse the applied revitalizing techniques and their relevance to the labour force in Miskolc.
In the next chapter I examine the following hypotheses.
7
Hypothesis 5
Migration and labour market changes took place in the city of Miskolc due to
deindustrialization and the lack of social and physical revitalisation.
Hypothesis 6
Brownfield development plans in Miskolc lack the complex approach, which would
mean taking socioeconomic aspects into consideration and the revival of labour markets
in neighbouring areas.
To prove these hypotheses I use several different methods of analysis. To prove my first
hypothesis, I make a statistic analysis and a shift-share analysis. Based on the work of
Rowthorn - Wells (1987) I define negative, positive and external deindustrialization. I use
shift-share analysis to isolate structural changes from employment changes due to local
factors. In the international literature similar researches were conducted by Batóg - Batóg
(2001) and Jonuschat - Knoll (2008) regarding the Czech regions, and Bielik - Rajčániová
(2008), Lang (2011) and Havlik (2013) analysed the Visegrád Fours in different time
intervals.
Shift-share analysis is the most appropriate method of investigating deindustrialization,
as one can interpret industrial processes on a regional level based on the ratio of full
employment. As I calculate, my first step is to perform a sift-share analysis to all of the
Visegrád Fours separately. The results have shown where the employment growth was above
or below average (Si). The results were divided into local (Sr) and structural (Sa) factors. All
three Si, Sr and Sa can have a positive or negative value. The researched countries can be
categorized based on these results, which shows whether local or structural factors dominated
in the employment growth.
To disclose the connection between deindustrialization and structural change I examine
different indexes. On Stamer's (1999) recommendation, I use the extent of structural changes
between two periods as an indicator. The most often used indicator to prove specialisation is
the LQ index (Patik, 2005; Patik-Deák, 2005; Szakálné Kanó, 2011) or location quotient
(Pearce, 1993). Once the indicator is filled with statistic data, it is capable of detecting
concentration reflected in employment. There are several instances of this method used in
literature (Miller-Patassini, 2005; Gecse-Nikodémus, 2003, Patik-Deák, 2005; Szakálné Kanó,
2011; Kuttor - Hegyi-Kéri, 2012).
The Herfindahl-Hirschman index is one of the most well-known statistic indices to
numerate concentration and specialization. It is also called absolute concentration and
specialisation index. Jeney - Szabó (2001) observe that it is remarkably similar to the Gini-
Hirschman concentration ratio formula. The value of the index falls between 0 and 1 based on
what extent of absolute concentration and specialisation can be observed. I use the
Herfindahl-Hirschman location index and cluster analysis to support my hypothesis.
I explore the attitude towards deindustrialization with a primary study. I mostly use
interval and ratio questions in my questionnaire. I chose the following methodologies to prove
my hypothesis: cross chart analysis, factor analysis, cluster analysis and variation analysis. I
made the calculations with the help of the SPSS programme. My goal is to present the labour
market depression and second generational migration effect in Miskolc came into being due to
the brownfield within the city limits. As for my sixth hypothesis I analyse the Integrated City
Development Strategy by the city of Miskolc (in Hungarian IVS, in English ICDS), the
Integrated Settlement Development Strategy (in Hungarian ITS, in English ICSD) and the
Local Equal Opportunities Programme between 2013 and 2018. I evaluate the financial
support for brownfields as individual projects.
8
Table 1: Methodology assigned to the hypothesis
Goals Established
hypothesis Methodology
Identifying the types of
deindustrialisation.
Hypothesis 1
Descriptive statistical analysis of the employment
structure.
Discovering the local and
structural reasons of
deindustrialisation, identifying its
types.
Shift-share analysis, differentiation of local and
structural factors.
Studying the relationship of
structural change and
deindustrialization.
Hypothesis 2
Indicators of structural change (Moore's
structural change value, Moore's structural
change value with spatial vectors, Euclidean
norm- EuN, sum of ranking differences - SRD,
growth rate parameters - GRP, modified Lilien
index - MLI).
Analysing the development of
regional processes in regards to
deindustrialization.
Hypothesis 3 Specialization and concentration indices (location
index, Herfindahl-Hirschman specialization).
Detecting the spatial correlation
between the size and extension of
brownfields and the regional
labour market.
Hypothesis 4 Moran’s I.
Demonstrating labour market
depression and second generation
migration pressure.
Hypothesis 5 Cross chart analysis, factor analysis and analysis
of variance.
Analysis of complex brownfield
revitalization developments. Hypothesis 6 Analysing documents and data.
Source: own compilation
3. Evoluation of the concept of deindustrialization
According to Kiss (1998), the industry and manufacturing industry stimulated the
development of the economy in Hungary, especially in major provincial towns in the 1990s.
The industry is the fore bringer of technological advancement; it stimulates innovation and
increases employment. The most complex description of the changes taking place in the
industry and economy of the developed countries is structural change (Kiss, 2010).
Experts first started to investigate the concept of deindustrialization
(dezindusztrializáció in Hungarian, désindustrialisation in French, Deindustrialisierung in
German) in the United Kingdom regarding the slowing economic growth of the '70s
(Tregenna, 2011). Singh (1977) was among the first to describe the connection between
deindustrialization and structural imbalance. According to Takács (2004), deindustrialization
refers to the decline and degeneration of industry. Kiss (2010) is of the opinion that the most
accurate Hungarian expression for the phenomenon is “elipartalanodás”.
In the 2009 edition of The Dictionary of Human Geography Gregory (2009) clarified
that deindustrialization takes place ‘A sustained decline in industrial (especially
manufacturing) activity and capacity’1. Deindustrialization means the decline in the number
1 These changes are inherent to the economic cycle, which means industrial production is coupled with weakening competitiveness and decreasing national and international demand, thus deindustrialization represents
9
of people employed in the manufacturing industry in the interpretation of Kollmeyer (2009).
After studying the relevant literature I agree with Saeger (1997) when he states that the most
widely accepted definition of deindustrialization is the decline of the employment ratio in the
manufacturing industry within the total number of people employed. Based on Saeger (1997)
I summarize why experts use the change in the employment numbers in the industry to
quantify deindustrialization:
the ratio of the people employed in the manufacturing industry is a widely accepted indicator of determining the level of industrialisation and quantifying economic
maturity,
the most outstanding indicator of the size of the manufacturing industry is the employment level of the sector, which the public is also interested in,
it focuses on the cost coefficients between the sectors, especially the input factors (due to its derived nature),
decrease in the investment ratio affects the employment in the manufacturing industry, as the latter has a relatively large need for investment.
We have to differentiate between a relative or absolute change in the industry. In case of
a relative decrease the other sectors show a bigger growth rate than the industrial sector,
which means that the industrial ratio decreases within the full number of people employed.
Concerning deindustrialization Alderson (2011) talks about the relative decline in number of
employment in the manufacturing industry compared to the whole labour market. As
Rowthorn - Wells (1987) interpret the process, they differentiate between external, negative
and positive deindustrialization. In their interpretation positive deindustrialization is such a
process, in which the drop in the industrial employment is not accompanied by a surge in
unemployment, as enough new positions arise parallel to the process in the tertiary sector. In
this case deindustrialization is the sign of a successful developing economy. To describe
negative deindustrialisation, Lux (2011) uses the expressive term destructive
deindustrialization. In my interpretation deindustrialization possesses a negative effect when
the tertiary sector cannot make up for the terminated workplaces, so it induces growth in
unemployment and inactivity rate.2 Rowthorn - Wells (1987) are on the opinion that the third
type of deindustrialization is one caused by commerce: „the exports from the manufacture
industry of the country drop and the output shifts towards the dominance of the service sector,
which entails the reallocation of resources to other sectors.”
We can gain new aspects to understand the phenomenon by investigating the
experiences the Visegrád Countries had. Gaining a deeper understanding of the
deindustrialization process aids the creation of sustainable development and economic
growth, thus creating a higher employment rate.
4. Theoretical overview of deindustrialization
In the following theoretical overview I examine what take the different schools of
economy have on deindustrialization and what scope of analysis they provide for
understanding it. I also strive to understand how economic logistics interprets the economic
and labour market changes following the regression of the economy. In Hungary the 8 to 10
years following the regime change were mostly spent with catching up to the rest of the
European Union, but at the same time there were several economic and social fields where the
necessary changes did not take place (Nagy, 2009). Due to the novelty of the phenomenon,
the study of the industrial recession and its theoretic relevance to social economy is a difficult
underdevelopment beside the decrease in the employment ratio and the imbalance of payments (Gregory et al.,
2009, 150 o.) 2 In the following chapter of the analysis I investigate if the process is discernible in Hungary and the other Visegrád Countries, and if yes, which types are characteristic on a regional level.
10
task, as the phenomenon is relatively new. The theoretical framework provides a guideline to
the currently still ongoing processes. Deindustrialization is a process without equilibrium
related to the structural transition. The orthodox methodology of the economy lacks its
complex analysis (Knottenbauer, 2000). Thus it is essential to enlarge the scope of
investigation to understand the process. Deindustrialization requires a complex approach in a
dynamic time horizon, its explanation provided by the theoretical framework of the new
institutional and (co)evolutionary social economy.
The new institutional social economy strives to know the consequences of path
dependence, formal and informal institutions and the connection between the institutions and
rationality. Hodgson (1998) identified the following five characteristics of the institutions:
Each institution contains individual interactions with essential informational feedback.
Each institution has a set of characteristics, complete with common ideologies and practices.
The institutions sustain the common ideologies and expectations, and those in turn keep the institution afloat.
Although the institutions are not permanent or everlasting, they are, in fact, relatively durable, self-strengthening and stable in their quality.
The institutions embody values, normative judgements and expectations. Williamson believes that institutional analysis is possible on four levels. On the
uppermost level one can find social embeddedness, norms, traditions and conventions. In
North’s definition this level holds the informal institutions. The individuals' norms do not
change immediately as politics does. In the process of deindustrialisation, mostly the
transition from planned economy or large, former socialist businesses shaped the individuals'
orientation and labour market attitude. The labourers carry the same norms in the institutions
and in the labour market as well, which affects their role in production. Change comes
extremely slow to this level (Máté, 2012). The institutional surroundings appear on the third
level, affecting change through their formal rules in jurisdiction and legislation. This is the
level of the game rules. Legislation provided the base for the formation of the market
economy, the emergence of private property and the formation of different economic
organizations during the change of the regime.
Table 2: The institutional characteristics of deindustrialization
Levels Rate of change
(years))
Level 4 Social
embeddedness
Attitudes, orientation, industrial work morale,
expectations towards the companies and the
government aids in connection with receding economy.
Over 100 years
Level 3 Guidance
structures
Method and size of state aids, e.g. revitalization of
brownfields. 10-100 years
Level 2 Institutional
surroundings
Legislation aiding industrial change, law of
privatization. 1-10 years
Level 1
Resource
allocation and
employment
Reallocation process of the industrially employed. continuous
Source: own compilation based on Williamson (2000)
It promoted industrial change through privatization. It also had a role in the reincorporation of
the workers leaving the industry into the labour market through the labour policy. Thus the
second level became the playground of the market, the companies and other economic agents.
11
Guiding structures such as the government are also included, as it can influence the transition
through government grants and subsidies. On the first level we can see the dispersion of the
physical and human resources. An important field of study for the new institutional economy
is the study of the post regime change countries from Eastern Central Europe. In my opinion
the aforementioned four levels provide a sufficient base for the analysis of deindustrialization.
Already in 1899 Weblen's pioneer ideas were centred on the synchronization of the
evolutionary conception with the economic rationality. He put the framework of economic
decisions and rationality into socio-cultural and institutional frame. Evolutionary economics
differs on several levels from mainstream trends: the investigation of the population, the meso
level and dynamic viewpoint play a more important role in it. Evolutionary economy places
not only the effect of institutional changes on the economic output into the centre of its
attention, but also studies what effect change has on the other elements of the economy.
Investigating from the viewpoint of learning, competition and cumulative processes is also
regarded important. Evolutionary economy draws attention to the problems within the static
framework of the investigation, which is the evaluation of the economic rules' time dimension
and its treatment from a Darwinian approach. That is why we cannot investigate economic
actions only from a mechanical approach, separately from space and time. Marshall views the
neoclassical analysis with scepticism, which only concludes research along states of
equilibrium (Hausmann, 2007). Deindustrialization as a whole is not a balanced state but
rather a process towards equilibrium3. It analyses the actions of the economic participants,
who are educable and moderately rational in time and space. Dosi - Nelson (1994) believe
evolutionary economics puts a great emphasis on explaining change. This viewpoint is a huge
aid in understanding deindustrialization and its socio-economic effects. The unchanging
system of institutions and homogenized spatial view often inhibits the economic structural
change and its dynamics, especially in Eastern Central Europe (Elekes, 2013).
Deindustrialization is such a dynamic process in which it is worth to investigate how the
amassed tacit knowledge, work ethic, motivation, routine and hereditary units lived on
afterwards. The evolutionary economy compares the learning ability of the companies to the
previously accumulated, pre-existing knowledge they had, thus defining path dependence,
which limits further growth possibilities. The routine processes used by the evolutionists are
also interpreted as customs by Hodgson (1993). Lux (2009) concludes that in Central Eastern
Europe in a big percentage of the industrial companies such routine processes came into being
due to forced industrialization, decrees protecting the economy and the mostly centrally
governed economy, which were largely due to special decisions, work rules and customs. For
example, such 'customs' were unemployment within the gates and the mingling of private and
company property. Dosi et.al. (2000) separated routine as an organisational attribute, and
professionalism, which is an individual attribute.
Of the two branches of evolutionary economy I highlight the trend which studies the
structure and proceedings of complex systems and how they change together. This is the co-
evolutionary process, according to which the industrial and market changes are in strong
correlation with each other. According to the co-evolutionary process the changes in one
subsystem affect other subsystems in their proceedings, which result in a system wide change
of characteristics (Elekes, 2013). The social, economic and environmental factors are in co-
evolutionary correlation with each other in any given area. In old industrial areas the labour
market attitude, the work ethic and the customs of the population were largely shaped by the
factories in the area. (Polluted) Brownfields arose parallel with the decreasing industrial
production and employment. The transition of the economic activity in the area erodes the
knowledge base and human resources of the area.
3 Pasinetti (1981, 1993) defined the equilibrium not as a static state, but as a process for equilibrium path.
12
Another branch of co-evolution concentrates on the changes related to the 'population'.
The changes in a defined population will influence processes in another population (Lengyel-
Bajmóczy, 2013). The life story and post-industrial changed labour market experience of the
parents’ influences the advice given to their children, thus the labour market behaviour of the
next generation, and so migration and mobility becomes a family decision.
5. New findings and novel statements of the research
I present the findings of the research centred on two main points:
analysis of the regional processes related to the receding economy in the Visegrád Countries between 1999 and 2012;
description of labour market processes in Miskolc.
5.1. Analysing deindustrialization in the Visegrád Countries
In the second chapter of the dissertation I establish a working category to explore the
regional similarities and relevance of employment policy based on the literature review.
Rowthorn - Wells (1987) differentiate between external, positive and negative
deindustrialization in their interpretation. I define the types of deindustrialization with shift-
share analysis to separate the structural change from employment changes due to local factors.
Table 3: Determining the types of deindustrialization
Type
Changes in
industrial
employment
numbers
Changes in the
employment
numbers of the
tertiary sector
Changes in the
employment
number on the
whole
Factors having
negative
influence on
employment
External decrease increase decrease structural
Internal Negative decrease decrease decrease local
Positive decrease increase increase local
Source: own compilation
In case of external deindustrialization, the changes in the industrial structure have a negative impact on employment, with a decreasing industrial potential the growing
tertiary sector cannot compensate for the differences.
In my interpretation of negative deindustrialization, the growth of the tertiary sector cannot compensate for the receding economy. On the whole, the number of people
employed in the region decreases, which is more likely due to inner factors rather than
structural changes.
Positive deindustrialization is such a process, where the receding economy changes the economic structure in such a way that the tertiary sector can enhance its employment
potential and thus full employment increases in the area. This change is largely due to
local factors.
Based on the industrial employment numbers we can observe deindustrialization
processes between 1999 and 2012 in half of the regions of all Visegrád Countries. Out of the
twenty regions in seven negative, in four external and in nine positive deindustrialisation
regions took place. External deindustrialization is characteristic to three regions of Hungary
(Central Dunántúl, Southern Dunántúl, South Alföld) and one Czech region. Negative
deindustrialization is observable in five Polish regions and in South Dunántúl and North
13
Hungary. Positive deindustrialization took place in four Czech, two Slovakian, one Polish
region as well as in Central Hungary and the North Alföld.
Figure 2: Development of average net migration rate in the Visegrád Countries on a
regional level Source: own compilation
To enhance the efficiency of employment politics on a regional level I formulate the
following theses.
Thesis 1a:
All three types of deindustrialization (positive, negative and external) are present in the
Visegrád Countries on a regional level between 1999 and 20212. Furthermore, relative
and absolute deindustrialization is discernible on a regional level.
Thesis 1b:
The employment rate of the age group 35 to 44 decreased on a higher degree than in
groups with external deindustrialization. Migration is characteristic to regions with
negative deindustrialization since 2001, which means their net migration rate is
negative.
Farber (1999) believes the turbulence expresses a relation of instability between the
employees, thus the number of people flooding the labour market increases. Demands change
on the labour market, and an increasing demand arises for higher skilled workers. Skills
related to 'old' industrial production suffer devaluation (Kocziszky, 2008), enhancing
structural unemployment and the segmentation of the labour market. According to Layard, et.
al. (2005), the turbulence refers to the growing 'imperfection' of the labour market. The
connection between the change in industrial employment and the dynamics of the structure
change is displayed in the table four. Taking the distance of congeniality from zeros, the pro
rata symmetry, the triangle inequality and dispersion factors (MLI) into consideration, the
increase in the industrial employment is less characteristic to the more intense structure
change in the Visegrád Countries between 1999 and 2012. I found that at four indicators
(Moore's restructuring value, EuN, SRD, GRP) structure change is faster in negative
deindustrialization regions and slower in positive or external deindustrialization regions.
14
Table 4: Correlation between structure change and the ratio of industrial employment
Between 1999 and 2012 on a regional level Correlation value of the industrial
employment ratio
Moore's restructuring value r=-0,159 Moore's restructuring value with spatial vectors r= 0,031 Euclides' norm (EuN) r= 0,056 Relative difference of the absolute value (SRD) r= 0,247 Growth rate parameters (GRP) r=-0,079 Modified Lilien index (MLI) r=-0,345
Source: own compilation based on EUROSTAT data
According to Rowthorn - Wells (1987), the growth in the tertiary sector results in the
temporary decrease of the primer sector. When the economy reaches a point of prosperity,
tertiarisation continues at the expense of the secondary sector. The literature calls this
explanation of deindustrialization the 'maturity theory'. According to this theory, there is a
point in economic development where the economy is at a point of maturity, after which the
growth of the service sector is accompanied by the regression of the industry. I investigate on
a regional level if there is a connection between the primary sector employment rate and the
industrial employment ratio. During the regional analysis of the Visegrád Countries (in case
of 35 regions) the most accurate expression of the connection between the changes in the
industrial employment ratio and the agrarian employment is logarhythmic regressive
coherence. The explanatory power of the model is (R2=0,465), which is moderately strong
4.
Equation 1 y= ln (0,057x) + 1,098,
where y is the change in ratio of industrially employment between 1990 and 2012, x is the
ratio of people employed in the primer sector in 1999 in the Visegrád Countries on a regional
level. Based on my findings I formulated the following theses.
Thesis 2a:
It is proven that the ratio of agrarian employment affects the deindustrialization
process. In regions where the employment numbers are lower in the agrarian sector, the
decline in the industrial employment is more likely.
Thesis 2b:
There is a moderately strong correlation between the rates of deindustrialization and
structure change in the Visegrád countries ridden with labour market turbulence. In
those regions where the structural change is more intense, manufacturing employment
rate’s decline is more characteristic. In regions with negative deindustrialization there is
a continuous structure change, which is different in its dynamics from those found in
regions with external or positive deindustrialization.
It is unavoidable to analyze the industrial specializations of the regions once we are
talking about deindustrialization. Regional analyses highlight that beyond the industrial macro
processes there are significant regional differences (Kuttor, 2011). During my research I focus
on determining what kind of connection can be found between the industrial specialization of
the regions and deindustrialization. I examine six branches of economy (agriculture,
manufacturing; construction; financial intermediation and real estate; administrative and
community services and household activities; wholesale and retail; hotels and restaurants) in
4 You can find the tables containing the research data complied with the help of the SPSS programme in the appendix.
15
the regions of the Visegrád Countries between 1999 and 2012. I answer my hypothesis based
on the results of two indexes: locational (LQ) and Herfindahl-Hirschman (HH).
In 2012 the concentration of the people employed in the industry rises in the regions
with deindustrialization, especially in the areas with negative deindustrialization. The LQ
indicator takes not only the change in the industrial employment numbers, but also the
national and full employment numbers into consideration. The data regarding the areas with
negative deindustrialization have results above the average LQ=1 index. On average, the
industrial LQ values increased by 4 percent between 1999 and 2012 in this group save for one
region (Zachodniopomorskie). The average LQ index values of regions in negative depression
was 1,098 in 2012, which exceeds the average of the Visegrád Countries (LQ=1,016). In the
same year the regions with external deindustrialization had an LQ index with a 1,074 value on
average. In the regions with positive deindustrialization the values were closer to the average
of the whole research (1,026). In these regions the concentration of people employed in the
industry has been decreased by 2 percent altogether in the researched period.
Table 5: Values of the LQ quotient based on the types of deindustrialization in 1999,
2008 and 2012
Average LQ value
in 1999
Average LQ value
in 2008
Average LQ value
in 2012
Regions with negative
deindustrialization 1,051 1,064 1,098
Regions with positive
deindustrialization 1,045 1,045 1,026
Regions with external
deindustrialization 1,077 1,090 1,074
Regions with (re)industrialization 0,941 0,941 0,941
Full data 1,0035 1,0101 1,0163
Source: own compilation based on EUROSTAT data
Saeger (1997) described the changes in the ratio of the industrial employment numbers
with a U-shaped curve in terms of the GDP per capita. Analyzing the regions of the Visegrád
Countries between 2000 and 2011, there is a strong connection between the location index
and the logarithmic GDP, which can be described by an upside down U-shaped curve. I
determine that Saeger's statement is true on a regional level in the Visegrád Countries
between 1999 and 2012. The strongest correlation between the two variables can be observed
in the year of 2008.
16
Figure 3: The correlation between the location quotient and logarithmic GDP per capita
on a regional level Source: own compilation based on EUROSTAT data
In the following section I thoroughly analyze the connection between regional
specialization and deindustrialization. The absolute specialization of the regions show how
diversified the sector structure in that region is. In a country where one sector is overly
dominant, the other regions usually have a significant absolute specialization index, too.
Those regions of the Visegrád Countries can be considered specialized, which have a different
sector structure than the national average. I examine what relationship the industrial
specialization of each region has to the type of deindustrialization found in it, furthermore, I
seek to know what relationship there is between the industrial specialization of the regions
and their logarithmic GDP per capita.
The specialization of the Hungarian regions is largely influenced by the industrial and
public administration sector, and also by the trade ratio. While industrial specialization
decreased in each region between 1999 and 2012, the capital city experienced a strong
specialization in administration. In each case the specialization index decreased in every
region, and based on the partial results, regional industrialization specialization also dropped.
While specialization in the administrative sector is prominent in Central Hungary, the
manufacturing industry has an outstanding ratio in Central and West Dunántúl. Regional
specialization was at its lowest in Central Hungary and South Alföld in 2012.
The specialization index decreased to a small extent in the two Hungarian regions
characterized by negative deindustrialization process. The labour market status of the South
Dunántúl region is compensated by the higher specialization ratio of the agrarian sector. The
specialization of the agrarian sector is very low in the North Hungarian region.
Low specialization index is characteristic to the areas with negative deindustrialization.
The other two deindustrialization types have a specialization index exceeding the average of
the Visegrád Countries. This high specialization index is partially defined by the number of
people employed in the financial sector, and it is dated back to the ratio of people employed in
construction and the industry.
Parallel to the relapse of the industry there was no increase in the other industrial sectors
in case of negative deindustrialization. The average of the specialization value shows a
17
decreasing tendency between 2004 and 2011. The regression of the industry take place
parallel to decreasing specialization in these regions, which affects the regional
competitiveness as well.
Table 6: Absolute HH specialization index of the regions
Region 1999 2008 2012
Central Hungary 0,232 0,205 0,209
Central Dunántúl 0,242 0,235 0,234
West Dunántúl 0,247 0,238 0,228
South Dunántúl 0,225 0,216 0,216
North Hungary 0,237 0,225 0,232
North Alföld 0,232 0,217 0,217
South Alföld 0,217 0,209 0,209
Source: own compilation based on EUROSTAT data
The findings of my research allow for the formation of the following statements regarding the
Visegrád Fours.
Thesis 3a:
Areas with negative deindustrialization can be described by high industrial
concentration and low industrial specialization index. Regional concentration of the
industrially employed took place in regions with negative deindustrialization during the
researched period.
Thesis 3b:
While industrial specialization contributes to the increase of GDP per capita, the
regional concentration of the industrially employed hinders the net output of the
regions.
Thesis 3c:
There is a middle strong tie between the location index and the logarithmized GDP on a
regional level in the regions of the Visegrád Countries between 2000 and 2011, and it can
be described by an upside down U curve.
Two of the negative deindustrializational regions are located in Hungary, these are
North Hungary and South Dunántúl. The changes of the local factors have a greater influence
on the changes in employment in these regions. Such a local, inner factor is the presence of
brownfields in the area. In the aforementioned two areas I thoroughly examine the effect the
brownfields that arose after the recession of the industry have on the labour market. I use the
Moran's I spatial autocorrelation indicator to analyze the subregions in the two regions.
Moran's I is the suitable method, as it is capable of analyzing social and economic phenomena
and processes, also it can discover their system of spatial correlations. It provides a substantial
amount of help, as it not only numerates the correlation value, but also portrays it in space.
When doing such an analysis it is always a cordial question how employment rate and the
unemployment rate are around brownfields. The index is capable of proving that labour
market indicators clustered in the presence of brownfields. Based on labour market findings
and social economy logics we know that the value of indicators is either low or high in
18
clusters. I used in case of the Moran's I index not only the neighborhood matrix (taking the
nearest neighborhood) but also the extent of brownfields instead of spatial weights, as they
effect areas further away from the brownfields due to commuting. The extension of
subregional brownfields did not allow for the research to spread to district level. I use data
from 2004 and 2008, as the effects of depression are not yet visible in them. I performed my
calculations on twenty-eight regions from North Hungary and twenty-four from South
Dunántúl. According to Moran's I we can conclude that there is a positive spatial
autocorrelation between the size of the brownfields and labour market in the subregion both in
2004 and in 2008. The autocorrelation between the unemployment rate and also the
employment rate grew in the two research periods, whereas the activity rate decreased in the
North Hungarian subregions. In the regions of South Dunántúl the values of Moran's I are
lower in both time frame, and the extent of the change is also of smaller proportion. Relying
on the results of the calculations I studied the industrially depressed subregion categorization
in the case of two Hungarian subregions with negative deindustrialization. Upon defining an
industrially depressed region I take the size and layout of brownfields into consideration.
Based on the indicators I define the industrially depressed regions in the two researched area
as the following:
ratio of industrial employment in 2011,
inactivity rate instead of unemployment rate (2011),
inland migration difference, used by Ballabás between 2000 and 2011,
ratio of the brownfields. I include those regions into the category, where there is at least two cases of above average
value and the ratio of the brownfields is more than 1 percent of the regional amount. With
each indicator I compare the results to the regional level, and above average values are
characteristic to the region. I include those subregions into the industrially depressed regions'
group, where the extent of the brownfields exceeds one third of the regional average, and in at
least one case I find an indicator differing from the average values, which I display in table 7.
Table 7: Industrially depressed subregions in negative deindustrialised areas in
Hungary
Extent of brownfields in North
Hungary and South Dunántúl
regions
Census 2001
(subregions)
Ballabás-Volter
2006, (subregions)
Hegyi-Kéri 2015
(subregions)
Miskolc 1169,25 ha Miskolc Miskolc
Kazincbarcika 216,32 ha Kazincbarcika Kazincbarcika Kazincbarcika Bátonyterenye 211,72 ha Bátonyterenye Bátonyterenye Bátonyterenye Ózd 165,44 ha Ózd Ózd Ózd Salgótarján 96,68 ha Salgótarján Salgótarján Salgótarján
Szerencs 27,28 ha Szerencs Tiszaújváros 0 ha Tiszaújváros
Bonyhád 1 814,00 ha Bonyhád
Komló 307,89 ha Komló Komló Komló
Tamási 58,37 ha Tamási
Source: own compilation
I expand the circle of industrially depressed areas compared to the census in 2001 and to the
definition of Ballabás-Volter. It now includes besides Komló, Bonyhád and Komló from
South Dunántúl. From North Hungary I excluded Tiszaújváros from the list of industrially
depressed regions, the subregions of Szerencs and Miskolc were included instead. After
analyzing the results I make the following theses.
19
Thesis 4a:
Spacial autocorrelation can be detected between the site of brownfields and the labour
market in two Hungarian negative deindustrialization areas. In the region of Northern
Hungary subregions stronger spatial relationship can be observed. The presence of
brownfields must be taken into consideration during the definition of industrially
depressed subregions.
5.2. Measuring labour market depression and migration effect arising from
deindustrialization in Miskolc
The consequences of the regime change, or specifically the emergence of brownfields is
not a homogenous process (Tóthné, 2013). Certain regions bear the marks of
deindustrialization up to this day, while others have managed to get over the transition caused
by the regime change. After the migration tendencies of the last decade and the mass
immigration after the regime change, the migration balance of the county and Miskolc are
both heavily in the negative. This diminishes the desirability of the city for aspiring
transnational companies. These companies represent new challenges with their location and
labour force development (Nagy, 2007). Based on a research concluded previously I diverge
to study the physical and social effects of deindustrialization on a local level. I analyze the
effect brownfields have on the labour market and the society. Prior to displaying the results of
the questionnaire I present the labour market connections based on the data of the 2011
census. I report the labour market processes in Miskolc and the opinion and attitudes of
inhabitants living near brownfields towards the labour market and migration based on my
previous study.
In the past twenty years Miskolc has lost about one percent of its population annually.
Between 2001 and 2011 the change in population was also largely influenced by the
migrational difference, in other words, migration has intensified in the past decade. Mass
migration after the regime change and the consequential negative migrational balance are
characteristic to the county capital (see table 8).
Table 8: Changes in the number of inhabitants in Miskolc
Miskolc Population Time
interval
National increase (+) or
decrease (-)
Migration difference
2001 184 125 1990-2001 -6 785 -5 532
2011 167 754 2001-2011 -8 425 -7 946
Source: own compilation based on KSH census data
In case of Miskolc I deduce the age pattern of the migration based on census data. I
analyze the data of the KSH calculated census by age group in Miskolc city. The data are
conducted on each generation separately, and if I take the changes with a 5-year shift, the
following is the result. By shifting the 20 to 25 age group with 5 years I see that the
generation steadily decreases. The data between 2012 and 2014 are outstanding as the
decrease in the 25 to 29 age group totaled to 15-20 percent. This relapse includes natural
decline amongst the population, which is very low in this young age group. Migration has also
intensified in the 30 to 34 age group from 2012, their value is 13-17 percent. As you can see
in diagram 5, there is a continuous migration from the 30 to 34 age group since 2006. The
surge in 2001 is due to the fact that only during the census in that year did it become clear
how many people moved into the city, so that information represents an accumulation in the
20
data. Concerning the data from the last 5 years, there has been a decrease in the migration of
the 35 to 39 age group, but there has been a significant growth in the migration rate of the 30
to 34 and 25 to 29 age group.
Figure 4: The changes in the population of Miskolc broken down into age groups, based
on census data Source: own compilation based on KSH census data
Based on these data there have been no migrations to such an extent in the age group of
30 to 34 since 1995. This age group altogether leaves the labour market of the county
borough. According got the census data there was a 7 percent unemployment rate in 2011.
The dispersion of unemployment is not significantly different from that of other cities. The
ratio of unemployed people from the 30 to 39 age group is lower than in Budapest, Győr or
Kecskemét. Despite the presence of unemployment, it does not smite the youth more than in
other Hungarian big cities. This fact does not justify the migration of this age group, at least
not to such an outstanding extent.
Figure 5: Age composition of unemployment rate
Source: based on KSH census data
21
The participation and economic activity of the 30 to 39 age group lags behind other
cities, it is just 30.64 percent. Due to migration, this age group is missing from the labour
market of the city. In Pécs, where the heavy industry was also prominent prior the regime
change, the activity ate of the 30 to 39 age group is similarly low: 30.70 percent from the
economically activity persons. In Győr, the economic activity from all of this age group is
higher: 33.10 percent. The participation of the 20-29 age group is also lower than the other
investigated cities, in Miskolc this indicator is 16.82 percent, 17.24 percent in Pécs and 19.27
percent in Szeged.
Table 9: Economic activity structure according to age groups
County borough Age 20 to 29 Age 30–39 Age 40–49 Age 50–59
Miskolc 16,82% 30,64% 27,01% 23,75%
Szeged 19,27% 31,87% 26,05% 20,57%
Debrecen 18,60% 31,73% 26,21% 21,60%
Győr 18,66% 33,10% 25,21% 21,30%
Pécs 17,24% 30,70% 26,81% 23,09%
Kecskemét 17,90% 31,97% 25,79% 22,28%
Source: own calculations based on the 2011 KSH census data
The tendency turns around at the 40 to 49 age group, in Miskolc the economic activity
is 27.10 percent from the all, in Győr the indicator id 25.21 percent. The 50 to 59 age group
has similarly high results on the labour market from the all: 23.75 percent in Miskolc, and in
Szeged the participation of this age group in the economic activities is 20.57 percent. The city
of Miskolc includes former industrial sites of significant dimensions, currently these are
brownfields. According to the data provided by the North Hungarian Operative Programme
(2006) this amounts to 526 ha of brownfields located on four distinguished sites, three out of
which are located in the same vicinity (DAM, DIGÉP, Lyukóbánya). Originally the industrial
district was on the outskirts of the city between Miskolc and Diósgyőr, but as time went by,
the settlement slowly engulfed it. So today the 200-ha metallurgy and the 45-ha DIGÉP site is
located in the middle of the city. It makes the function change of the area more difficult that it
is a polluted, densely built-in, virtually unmapped city within a city, which is largely unused.
Despite the emphasis international literature put on the revitalization of brownfields, the city
invested 920 million HUF into providing a green field (62 ha) with necessary industrial
infrastructure. The city does not reckon with the revitalization and rehabilitation of the more
than 245 ha brownfields.
Table 10: Brownfields in Miskolc in 2012
Source: list of brownfields -own compilation based on the North Hungarian Operative Programme '
Name Type Size(ha)
List of brownfields
Észak-Magyarországi Operatív
Program
DAM Metallurgy 160
DIGÉP Machine
manufatue 45
Northeast industrial site Mixed industrial 300
Lyukóbánya Mine 21
VÁTI
DAM Metallurgy 190
DIGÉP Machine
manufatue 45
22
The city did not have plans for (social) revitalization for the current brownfields in the
past few years. The ‘Integrated City Development Strategy’ (ICDS) concluded in 2003
recognizes the necessity of revitalizing brownfields, but referring to the complexity of the
problem it does not reckon with significant progress. In the 2014 material of the ‘Integrated
Settlement Development Strategy’ the authors did not word any plans, they only set
rehabilitation as a goal. They do recognize the problem, but they do not mention its
integration into the labour market and the development of its human resources. The ever-
deteriorating socioeconomic infrastructure of the area makes advancement difficult,
investments fall away and it only increases the size of the slumming areas. The concentration
of social problems to one part of the city is in direct connection with the unrevitalized
brownfields of the area. According to my research hypothesis, labour market depression is
observable in all parts of Miskolc city. Its extent, however, differs greatly between its parts.
The inhabitants of the Diósgyőr area, directly located on a brownfield, are more depressed
than the inhabitants of a former greenfield.5 The depressed mentality of the labour market
contributes to the migration mobility growth. The attitude towards the area also influences
labour market behavior, they are considering immigration, but their encouragement of the
next generation to migrate is even bigger.
To prove my hypothesis I first define two concepts: labour market depression and
second generation migration push. The works of Dabasi Halász (2013) greatly influenced my
definition.
In my definition labour market depression means the following: the depression arising from deindustrialization urges the inhabitants to have presuppositions about the scarcity
of the demand for labour, thus giving up hope of finding employment. In connection
with the labour market depression I assume the following about the inhabitants of the
area:
a) their trust in the government's help and employment politics has been shaken, b) they consider the number of unemployment and people unfit for work high in
their area,
c) they believe they would not be able to find a new job in the foreseeable future, thus workplace fluctuation is low.
I define second generation migration push as the following: in case of the families living near brownfields and the parents, having experienced mostly low labour market
mobility and their age group often becoming inactive in their status, advise migration,
immigration or inland mobility to their children.
I used the opinions of inhabitants from the Avas area as a control group to check the
hypotheses. In a layered sampling process (based on gender, age and place of residence) 263
people were interviewed, 124 from the Avas region, 139 from the Diósgyőr-Vasgyár area.
5 In the study entitled Social Map of Miskolc made by the University of Miskolc, publicated in 2011, the reserarchers
also found an overrepresented majority of the inhabitants living in and around brownfields moody or depressed. The study
was concluded on a layered sample of 800 participants. The definition of the district resulted in a bigger area in our case.
23
Figure 6: Locations of the preceding data collection in Miskolc
Source: own compilation based on MJV’s map
Labour market depression
All the interviewed had to react to nine statements. I analyze the variants indicating
optimism and depression separately in order to find the significant differences in opinion in
the different parts of the city.
In the two parts of the city I average values of the six variants to measure the
differences in the judgment of the labour market:
The youth has no job opportunities in the area (10.1).
People with low schooling live in the area (10.2).
Mostly unemployed people live in the neighborhood (10.3).
People in poor health live nearby (10.4).
Unemployment rate is high in the area (10.5).
The site of the old factory deters potential investors and companies (10.9). Approximately 20 percent of the interviewed considers the labour market hopeless in the
Diósgyőr-Vasgyár area. In the Avas area the number of people believing the same was
roughly the half of it, 10 percent (see Figure 7).
The cross chart analysis shows a significant difference between the two parts of the city.
In the Diósgyőr-Vasgyár area a significantly greater number of people believe that the
prospects for the labour market are unsatisfactory, on both the level of supply and demand.
I average the evaluation of the following statements, too, which I consider hopeful:
New investments are to be expected in the area, which will create new jobs (10.6).
The state and the city provide a lot of help to the people in the neighborhood in their search for a new job (10.7).
In its current state the area is attractive to investors and new companies (10.8).
Diósgyőr-Vasgyár district
Avas district
Previous industrial territory (DAM, DIGÉP)
24
Figure 7: Depressed labour market attitudes in the Diósgyőr-Vasgyár and Avas areas
Source: own compilation
The cross chart analysis indicates a significant difference between the two parts of the
city. The people in the Avas area are more hopeful regarding the future and the labour market.
I summarize my findings on the topic in Table 11. Those living near the brownfield believe
that mostly unemployed people live in their surroundings. The people living near to the
underutilized industrial areas feel that the inhabitants' state of health is unsatisfactory, this
may be due to prolonged absence from the labour market.
The inhabitants of the Diósgyőr-Vasgyár area are more hopeful regarding the industrial
past: they believe investors find Miskolc and its area attractive in its present form. Regarding
the methods of employment politics, or, in other words, the governmental and municipal aids
in finding new employment, the people living in the Avas region are more satisfied. The
residential area influences how the interviewed perceived the unemployment rate in their
surroundings.
In agreement with my presupposition, the people in the Diósgyőr-Vasgyár region think
less positively of the labour market potential than the people in their neighborhood do. Social
slumming has already started in their area, so in their experience the neighbors have lower
levels of education and most of them are unemployed. In case of the latter, there is a
significant connection to the residential area. I chose the method of factor analysis to
categorize and interpret the variables. With this I wish to determine if it is possible to separate
factor groups with different mentalities 6,.7
. I also strive to reduce the number of variants
8.
6 During the data validation process we determined that the variables are valid for factor analysis based on both the correlational value and the anti-image matrix. 7 I came to the same conclusion based on the Bartlett test and the Kaiser-Meyer-Olkin criteria, too. Based
on the Kaiser criteria and the variance fractions I deemed using three factors is the most expedient way to
determine the number of factors, which was proven right by the Scree test, too. I chose the main component
analysis from the factor extraction methods. 8 After performing ortogonal rotation we received the following factor weights in the results, based on
which we can set up three different factor groups among the full data. We consider the factor weights significant,
as they exceed the preassumed 0,35 value in a 250-strong sample.
25
Table 11: Variants showing significant differences between parts of town
Statement Conclusion
Presence of
significant
difference between
parts of town
10.3 Mostly unemployed people live
in the neighborhood.
People in the Diósgyőr-Vasgyár area find the
labour market prospects of their neighbors
worse than the people in the Avas area.
Yes
10.4 People in poor health live
nearby.
People in the Diósgyőr-Vasgyár area find the
health of their neighbors worse than the
people in the Avas area.
Yes
10.6
The state and the city provide a
lot of help to the people in the
neighborhood in their search
for a new job.
People in the Diósgyőr-Vasgyár area find the
governmental aid in the job hunt less
satisfying than the people in the Avas area.
Yes
10.7
In its current state the area is
attractive to investors and new
companies.
People in the Diósgyőr-Vasgyár area have a
higher appreciation of the city's investment
potential.
Yes
Source: own compilation
I perform factor analysis (Kaiser normalization, varimax rotation) on the whole group
and the two areas separately, then based on factor variants I generated the different segments
with cluster analysis (k central method, Euclidean distance function). I put the statements
about the depressed labour market (mostly unemployed live in the neighborhood,
unemployment numbers are high in the area, uneducated people live in the neighborhood,
people in poor health live nearby) into the first group for both the whole group and for the
Diósgyőr-Vasgyár area. I put the optimistic statements (new investments and jobs are to be
expected in the area, the government aids job seekers in the neighborhood, the area is
attractive to investors in its current state) in the second group.
The third factor entails the deterring effect of the former factory area, and this carries
less weight than the previous two. Factor analysis performed on the two parts of the city
brought different results for the factor structure.
The difference is that in the Diósgyőr area the labour market's more negative,
depressive appreciation belongs to a stronger factor, in which the strongest variables are the
unemployed living in the area and their high numbers. In case of the Avas area the negative
beliefs regarding the labour market were reduced to a less serious group of factors. The
judgment on health landed in an even lower category, in the third factor group.
According to my hypothesis a more negative and depressed understanding of the labour
market is characteristic to the Diósgyőr area, whereas a more optimistic approach is
characteristic to the Avas area.
Regarding the variables on the labour market depression it was proven that the people
from the Diósgyőr-Vasgyár area have a worse impression of the current state of the labour
market than those in another part of the town, like in the Avas area.
Based on the aforementioned factors I performed cluster analysis (k-center method,
Euclidean distance function).
I characterize each group with the help of the cluster centers. Based on these results, we
can categorize the data into two cluster groups. In one there are 174 individuals, whose
depressional variables were high, their realistic attitude is low, and the optimistic tendencies
are mediocre.
26
Table 12: Factor analysis of labour market attitude variables based on rotated factor
weight matrix
Components
1 2 3
1. Unemployment rate is high in the area. 0.739 -0.165 -0.033
2. People with low schooling live in the area. 0.730 0.077 0.024
3. Mostly unemployed people live in the neighborhood. 0.705 0.102 0.412
4. The youth has no job opportunities in the area. 0.611 -0.289 0.041
5. New investments are to be expected in the area, which will create
new jobs.
-0.013 0.800 0.082
6. The state and the city provide a lot of help to the people in the
neighborhood in their search for a new job.
-0.042 0.788 0.002
7. In its current state the area is attractive to investors and new
companies.
-0.122 0.753 -0.172
8. The area of the old factory deters possible investors and
companies.
-0.089 -0.107 0.857
9. People in poor health live nearby. 0.440 0.046 0.618
Source: own compilation
There are 89 people in the cluster group with lower numbers, which can be described by
low depressed and realistic variables and high factor group of optimistic variables.
Second generation migration push
9.5 percent of the interviewed have already had jobs abroad. I study their division by
residence with a cross chart. 13 people, which is 52 percent of those who work abroad live on
the Avas, while 12 people, 48 percent of the group lives in Diósgyőr. Upon analyzing the
migration potential 38 percent were dismissive about finding employment abroad, whereas 62
percent would approve of it with some stipulations. 21.7 percent would take any job, a further
25.5 percent would join them abroad if they received better payment, and 12.9 percent would
insist on finding employment abroad within their fields of expertise. The migration potential
shows a higher willingness to work than what actually is realised. For those living in the
Diósgyőr area it is important to find a job abroad that pays more than the one they currently
have.
Figure 8: Working abroad – experiences and willingness
Source: own compilation
27
Contrary to the inhabitants of the Avas area, the people in the Diósgyőr area consider
their trade less marketable. 27.3 percent of the 139 people from Diósgyőr would enter
employment for a higher salary, and 11.5 percent would enter employment in their profession.
To the question whether they know recruitment office 10.7 percent of all interviewed
answered affirmatively. 42.9 percent of those who are in possession of this information are
between 25 and 34 years of age, 64.3% of them are male. 202 people of all the interviewed
have acquaintances working abroad. In case of both genders it is over 70 percent the ratio of
those, who have foreign migration safety net. I have to determine the tightness of this net by
the degree of acquaintance. In this study 26.6 percent have a relative abroad, 30,2 percent
have friends, 37.6 percent have acquaintances, and a further 3.4 percent has neighbors
working abroad. 85.3 percent of the 25 to 34 age group knows a person who works abroad,
and for 42.6 percent that is a friend.
Second generation migration push is when the parents urge their offspring to migrate
away. The values of the corrected standardized residuum prove that the younger generations
take part more readily in migration than the elders. This statement is true to the 25 to 34 age
group as well. In their case the values of the corrected standardized residuum is 2.1 for the
answer 'yes, anything'. In case of the answer 'yes, in my profession', the value is 2.3, whereas
for the answer 'no', the value drops to -4.6. I perform variant analysis to reveal as to what
extent the labour market attitudes influence the advice given by parents. The clean division
excluding the childless proves my hypothesis in a way, as a larger percentage of the
inhabitants of the Diósgyőr area believe that their children should continue their studies
abroad or in another Hungarian town. The inhabitants of the Avas are of the opinion that the
best place for their children to finish their studies is Miskolc or Budapest.9 Upon analyzing
the cluster groups I received an appraisable result. 31.2 percent of the first (depressed) cluster
group would send their children abroad to study. 76.5 percent of those parents who advise
their children to study abroad belong to the first (depressed) cluster group. The second group
has an optimistic viewpoint, its members preferring Budapest or another major Hungarian city
as a suggested premise for higher education. The results show significant differences, in other
words, the cluster groups define what advice parents give to their children regarding higher
education and further studies.
Table 13: Secondary studies based on labour market attitude
Suggestion from parents to study Depressed cluster Optimistic cluster
Abroad 76.5 % 23.5%
Source: own compilation
According to the polled people the job opportunities in the Diósgyőr area are not very
desirable for the youth due to the presence of the brownfields. I used variance analysis to
evaluate the opinions of the different genders. Based on the distribution between the averages
I can conclude that the women have a worse opinion about the employment opportunities for
the youth in the vicinity of a brownfield. Their opinion increases their children's participation
in migration. The two genders having a different judgment on the job opportunities around
brownfields is met on a 4 percent significance level. Based on the results I formulate the
following thesis.
9 Sadly based on values of the Khí square the nullhypothesis cannot be discarded, so we cannot point out
a connection between the variants.
28
Thesis 5:
Labour market depression is detectable in the city of Miskolc, especially in the Diósgyőr-
Vasgyár area. Second generation migration push can be detected in the city of Miskolc,
which is amplified by the proximity of the brownfields and the labour market
depression.
The three factors (environmental – economic – social) used in the revitalization of the
brownfields guarantee that beside the cleansing of the area from pollutants it will also be
enriched by new economic functions (renovation of real estates, establishing premises for new
economic purposes), and the social and labour market integration of its inhabitants will come
into focus.
Both the interviewed living around the brownfields and the inhabitants of the Avas
provided their opinion on the development of the brownfields in question 38 based on this
theory. 38 percent believe the most important issue is the removal of harmful substances from
the area, 34 percent say getting new job opportunities and the rehabilitation of the area are
more important. Most interviewed believe the restoration of the area is the third most
important. Most people put the renovation of living quarters into the third place and believe
the inclusion of new companies is the least important. Based on their place of residence, twice
as many inhabitants of the Diósgyőr-Vasgyár area believe the detoxification of the
brownfields than those in the Avas. In this case the value of the corrected residuum is 1.2. The
currently jobless and those in student status also find it important, their corrected residuum
value is 2.1 and 1.9. In case of the 25 to 34 age group they do not find cleansing the area
important, their corrected residual value is 2.9. They support settling new companies in, the
corrected residuum is 2.0. I summarize the findings by percentage in the following table 14.
Based on the project indicators I analyze the five revitalization projects that are either in
progress or are already finished (see table 14). From the comparison it becomes clear that
only one out of five projects counted on the appearance of new workplaces, which is
contradictory to international examples.10
Table 14: Evaluating the different dimensions of revitalisation
Removal of
left over
harmful
substances
from the
area.
Restoring the
surroundings of
the area.
Introducing
new
companies to
the area.
Renovation of
living quarters
in the vicinity
of the area.
Providing aid
and workplace
for the citizens
of the
neighborhood.
Most important 12.2 % 14.6 % 32.1 % 30.9 % 9.9 %
Important 13.0 % 21.8 % 19.5 % 29.0 % 16.8 %
Relevant 14.9 % 21.1 % 20.2 % 23.7 % 20.6 %
Less important 21.8 % 27.2 % 19.5 % 13.0 % 18.3 %
Not too
important 38.2 % 15.3 % 8.8 % 3.4 % 34.4 %
Source: own compilation
During revitalization it is necessary to increase labour demand around the brownfields in to
put the area back on a sustainable development course. Three project plans included
purchasing equipment into its application, which goes beyond rehabilitation, indicating that
10 The development agency in the United Kingdom counted the emergence of 6200 new workplaces in connection with the revitalisation of 752 brownfields (8-10 jobs per brownfield).
29
they wish to renew their fleet to make their economic activities more competitive. Finding
new economic functions is not among the priorities of the projects. It hinders the
socioeconomic cost-benefit analysis that based on the indicators of the project one cannot
quantify the social benefits, as there are no new jobs or public places created by it. According
to the literature, successful revitalization projects include the revival of public spaces,
building new habitations and they account for the fluctuation in real estate prices. The
monetized benefits and costs can be compared, analyzed and interpreted with social economic
methods. Based on their analysis I can conclude whether they really contribute to the
economic and social sphere in the area. I concluded calculations (Hegyi-Kéri 2013) on the
social and economic merit created abroad, specifically in Canada and the United States of
America, where they came to the conclusion that the revitalization of the brownfields raises
the price of real estates in a 2.5 km radius with 10 percent on average, and also increases tax
on them. As an output of the sum spent on revitalization they document the appearance of
new workplaces, habitations and trade areas.
Table 15: Subsidized brownfield projects in Miskolc between 2007 and 2013
Location Total expenses
(Ft) Equity (Ft)
Time
span of
the
project
Indicators
1. Miskolc 661 849 381 410 346 616 3 21 new
workplaces 5100 m
2
Purchasing
equipment
2. Miskolc 1 039 711 836 644 621 338 2 - No data Purchasing
equipment
3. Miskolc 831 856 323 515 750 920 2 - 5250 m2 -
4. Miskolc 1 585 342 683 808 524 768 3 - 5760 m2 -
5. Miskolc 369 803 160 229 277 959 2 - No data Purchasing
equipment
Source: own compilation based on NFÜ data
The study entitled Local Equal Opportunities Programme in Miskolc 2013-2018 deals
with improving the labour market possibilities for women, special needs individuals, romas
and senior citizens, but it did not mention extending labour market possibilities to those
citizens who witnessed the industrial changes. Not a word is written about the correction of
the consequences deindustrialization had on the labour market. On the first 25 pages of the
study the word ipar (industry) appears 13 times in connection with the past of the city. The
rehabilitation of 'abandoned industrial sites and military buildings' is finally mentioned as the
development of manmade environment. One of the reasons for the unsuccessful development
plans for the brownfields in Miskolc so far has been the incorrectly interpreted revitalization.
The subsidized development projects did not extend to finding new economic functions,
developing the society and creating new workplaces. I came to the following conclusion after
analyzing documents on this topic.
Thesis 6:
Between 2007 and 2013 the brownfield revitalization efforts in Miskolc did not include
the development of the labour market.
30
6. Practical results of the research
I hope the time and energy invested in my research will be utilized by economic
decision makers as they take my findings on the definition of deindustrialization and its types
into consideration during the formation of the regional employment policy, revitalization of
brownfields and the reduction of migration.
At the end of the research I can give the following answers to the questions I drew up:
To prove the relevance of employment policy I created a new work category in the second chapter. By differentiating external, positive and negative regional
deindustrialization we gain an opportunity for a deeper investigation of the labour
market, and the elaboration of regional methods for employment policy. They also
enable the further identification of endogenous factors related to the deindustrialization
process.
With the help of the categories the processes taking place in the negative deindustrialization regions become easier to understand through the indicators of
specialization, concentration, and the labour market.
The definition of labour market depression can form the basis of a local migration strategy.
A further expected result was a practical model by the usage of which the complex revitalization of a regional unit can take place, taking the problem of the brownfields
into consideration.
These conclusions could prove beneficial in political decisions concerning the
revitalization of the industrially depressed regions and brownfields. I hope that my research
and dissertation can contribute to the development of my home city in a way that they will
keep my findings in mind during the formation of development concepts.
7. Future plans for analysis
During the production of this dissertation I came across several directions and topics
which I intend to investigate at a later juncture. These are the following:
1. Analyzing the institutional environment in connection with deindustrialization, as suggested by the research levels of Williamson.
2. The definition of the kind of industrial policy formulation, which integrates regional and employment policy objectives.
3. Revisiting the analysis of the processes that took place in the Visegrád Countries after the economic crisis in 2008 from a different time perspective.
4. Analyzing deindustrialization along the lines of other endogenous factors. 5. Detecting labour mar